In Deep learning neural networks (DNNs) activation functions perform a vital role. In each neuron activation function is responsible for generating output signals from given input signals. Hence, activation function is one of the factors that influence the performance of DNN. A novel activation unit RAU (Reciprocal activation unit) is proposed in this paper. Most of the popular algorithms given more importance to positive signals, but proposed method handles the negative and positive inputs equally. The proposed RAU tested with both multiclassification and binary classification datasets. Iris flower and Wisconsin Breast Cancer datasets are used for the analysis. In Breast cancer dataset RAU provides 99.25% and 97.08% accuracy for classifica...
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...
Researchers have proposed various activation functions. These activation functions help the deep net...
Activation functions are an essential part of artificial neural networks. Over the years, researches...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
In recent years, various deep neural networks with different learning paradigms have been widely emp...
Deep neural networks (DNNs) have garnered significant attention in various fields of science and tec...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
In deep learning models, the inputs to the network are processed using activation functions to gener...
Deep learning is definitely notable in various classification field. DNN(Deep Neural Network) is a k...
The activation function plays an important role in training and improving performance in deep neural...
In this paper the effects of different activation functions on neural networks are argued
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...
Researchers have proposed various activation functions. These activation functions help the deep net...
Activation functions are an essential part of artificial neural networks. Over the years, researches...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
In recent years, various deep neural networks with different learning paradigms have been widely emp...
Deep neural networks (DNNs) have garnered significant attention in various fields of science and tec...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
In deep learning models, the inputs to the network are processed using activation functions to gener...
Deep learning is definitely notable in various classification field. DNN(Deep Neural Network) is a k...
The activation function plays an important role in training and improving performance in deep neural...
In this paper the effects of different activation functions on neural networks are argued
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...
Researchers have proposed various activation functions. These activation functions help the deep net...
Activation functions are an essential part of artificial neural networks. Over the years, researches...